# # Copyright (c) 2025 Huawei Technologies Co., Ltd. All Rights Reserved. # This file is a part of the vllm-ascend project. # # Licensed under the Apache License, Version 2.0 (the "License"); # you may not use this file except in compliance with the License. # You may obtain a copy of the License at # # http://www.apache.org/licenses/LICENSE-2.0 # # Unless required by applicable law or agreed to in writing, software # distributed under the License is distributed on an "AS IS" BASIS, # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. # See the License for the specific language governing permissions and # limitations under the License. # ---------------------------------------------------------------------------------- # This module manage the patch for vllm. There are two folders in this module: # - platform: contains the patches applied before worker starts. It's called by # `vllm_ascend.utils.adapt_patch(is_global_patch=True)` in # `vllm_ascend.platform.NPUPlatform.pre_register_and_update()` function. # - worker: contains the patches applied when worker starts. It's called by # `vllm_ascend.utils.adapt_patch(is_global_patch=False)` in # each worker's `__init__` function. # # Then in each kind of patch, there are three folders: # - patch_0_9_1: contains the patches applied when vllm version is 0.9.1. # - patch_main: contains the patches applied when vllm version is main branch. # - patch_common: contains the patches applied in both 0.9.1 and main branch. # # Once a new patch is added in vllm-ascend, please add the patch description into this file as well. # ---------------------------------------------------------------------------------- # What's Patched and how it works: # -------------------------------- # * Platform Patch: # ================= # ** File: platform/patch_common/patch_distributed.py** # ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ # 1. `vllm.distributed.parallel_state.destroy_model_parallel()` # Why: # vllm dose not support outside platform maintain its own `CoordinatorGroup`, vllm-ascend maintain EP and ETP # inside of the repo, and needs a common interface to destroy them, this patch add the interface of destroy # platform owned `CoordinatorGroup` to make sure all the CoordinateGroup can be properly destroyed # How: # Call `vllm_ascend.distributed.parallel_state method `destroy_platform_model_parallel` to destroy all the `CoordinateGroup` # Related PR (if no, explain why): # Future Plan: # Remove those patch when vllm merged them # 2. `vllm.config.ParallelConfig.get_next_dp_init_port` # Why: # vllm doesn't support get port from environment. # How: # Add the logic to get port from environment. # Related PR (if no, explain why): # Need a PR to vllm to support get port from environment. # Future Plan: # Remove those patch when vllm merged them # 3. `vllm.config.ParallelConfig.ParallelConfig.stateless_init_dp_group` # Why: # vLLM use gloo backend by default to initialize stateless dp process gourp, but we want to use hccl here to # get better performance # How: # adopt nccl backend to init process group.(Now we still use gloo, it's just a placeholder, we'll use nccl in the future) # Related PR (if no, explain why): # Need a PR to vllm to support more backend. # Future Plan: # Remove those patch when vllm support more backend. # # * Worker Patch: # =============== # ** File: worker/patch_common/patch_minicpm.py ** # ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ # 1. `vllm.model_executor.models.minicpm.MiniCPMAttention.forward` # Why: # The forward func of MiniCPMAttention in vllm do a datatype convert # (original datatype --> float32) to ensure the precision on cuda. # However float32 is not supported in cann rope op, thus we keep this patch # How: # Removed the dtype convert operations in forward # Related PR (if no, explain why): # NO, only for npu due to rope op. # Future Plan: # Keep this patch in vllm-ascend. # # ** File: worker/patch_common/patch_multi_step_worker.py ** # ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ # 1. `vllm.spec_decode.multi_step_worker.MultiStepWorker.sampler_output` # Why: # There are cuda hard code (current_platform.is_cuda_alike()) in # `MultiStepWorker.sampler_output`, and we need to use the patched `TP1DraftModelRunner` in it. # How: # Make speculative decoding extensible to different backends. # - support attention metadata register to the set supported spec decode # - offer a api in platform to determine whether spec decode is supported, # and deprecate is_cuda_alike in it. # Related PR (if no, explain why): # - https://github.com/vllm-project/vllm/pull/15195 # - https://github.com/vllm-project/vllm-ascend/pull/395 # Future Plan: # Revert it when the related pr is merged in vllm and vllm-ascend. # # 2. `vllm.spec_decode.multi_step_worker.MultiStepWorker.set_include_gpu_probs_tensor` and # `vllm.spec_decode.multi_step_worker.MultiStepWorker.set_should_modify_greedy_probs_inplace` # Why: # vLLM `Remove Sampler from Model Code` so vllm-ascend needs adapt to this change. # How: # Use vLLM 0.8.4 method to patch it. # Related PR (if no, explain why): # - https://github.com/vllm-project/vllm/pull/15195 # - https://github.com/vllm-project/vllm-ascend/pull/395 # Future Plan: # Remove it when we identify the reasons clearly. # # ** File: worker/patch_common/patch_spec_decode_worker.py ** # ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ # 1. `vllm.spec_decode.spec_decode_worker.SpecDecodeWorker.create_worker` # Why: # We need to use the patched `TP1DraftModelRunner` in `SpecDecodeWorker.create_worker`. # The mainly reason to overwrite `TP1DraftModelRunner`is the hard code of # `FlashAttentionMetadata` # How: # ditto # Related PR (if no, explain why): # - https://github.com/vllm-project/vllm/pull/15195 # - https://github.com/vllm-project/vllm-ascend/pull/395 # Future Plan: # Revert it when the related pr is merged in vllm and vllm-ascend. # # ** File: worker/patch_common/patch_eagle.py ** # ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ # 1. `vllm.v1.spec_decode.eagle.prepare_inputs` # Why: # We need to use the patched `prepare_input_kernel` in `eagle.prepare_inputs`. # The mainly reason to overwrite `prepare_input_kernel` is this is a triton # kernel, ascend is now not support triton kernel. # How: # Re-implementation the `prepare_input_kernel` triton kernel by pytorch # Related PR (if no, explain why): # - Ascend doesn't support triton # Future Plan: # Revert it when the ascend support triton kernel. # # ** File: worker/patch_common/patch_sampler.py ** # ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ # 1. `vllm.v1.sample.sampler.Sampler.apply_top_k_top_p` # Why: # We need to use the patched `apply_top_k_top_p` in `sample`. # The mainly reason to overwrite `apply_top_k_top_p` is # to improve performance. # How: # Re-implementation the `apply_top_k_top_p` function by pytorch # Related PR (if no, explain why): # - https://github.com/vllm-project/vllm-ascend/pull/970 # Future Plan: # Revert it when the ascend scatter performance improves. # # 2. `vllm.v1.sample.sampler.Sampler.apply_min_p` # Why: # We need to use the patched `apply_min_p` in `sample`. # The mainly reason to overwrite `apply_min_p` is # to improve performance. # How: # Re-implementation the `apply_min_p` function by pytorch # Related PR (if no, explain why): # - https://github.com/vllm-project/vllm-ascend/pull/970 # Future Plan: # Revert it when the ascend indexput performance improves. # # ** File: worker/patch_common/patch_distributed.py ** # ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ # 1. `vllm.distributed.parallel_state.GroupCoordinator` # Why: # vllm doesn't support all_to_all for GroupCoordinator. # How: # Add all_to_all implementation for GroupCoordinator. # Related PR (if no, explain why): # Need a PR to vllm to support all_to_all for GroupCoordinator. # Future Plan: # Remove this patch when vllm merged them. # # ** File: worker/patch_common/patch_utils.py ** # ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ # 1. `vllm.utils.direct_register_custom_op` # Why: # pytorch 2.7.o is not compatible with pytorch 2.5.1. While vllm is based on pytorch 2.7.0, but vllm ascend # is based on pytorch 2.5.1, so we need to use this patch to make vllm compatible with pytorch 2.5.1. # How: # patch __annotations__ check to make it compatible with pytorch 2.5.1. # Related PR (if no, explain why): # This is the problem in vllm-ascend # Future Plan: # Remove this patch once pytorch 2.7.0 is supported for vllm ascend.